The ability to accurately predict the mechanical properties of metals is essential for their correct use in the design of structures and components. This is even more important in the presence of materials, such as metal cast alloys, whose properties can vary significantly in relation to their constituent elements, microstructures, process parameters or treatments. This study shows how a machine learning approach, based on pattern recognition analysis on experimental data, is able to oer acceptable precision predictions with respect to the main mechanical properties of metals, as in the case of ductile cast iron and compact graphite cast iron. The metallographic properties, such as graphite, ferrite and perlite content, extrapolated through...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
Machine learning plays an important role in understanding and predicting the parameters of a microst...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The accurate prediction of the mechanical properties of foundry alloys is a rather complex task give...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
Mechanical properties of ductile cast iron (DI) depend on its microstructure, which is influenced ...
Cast iron is a very common and useful metal alloy, characterized by its high carbon content (>4%) in...
The study presents a Machine Learning (ML)-based framework designed to forecast the stress-strain re...
The complex metallurgical interrelationships in the production of ductile cast iron can lead to enor...
With the development of the materials genome philosophy and data mining methodologies, machine learn...
The ability of a metal to be subjected to forming processes depends mainly on its plastic behavior a...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
High strength alloys are materials with alloying additions designed to produce a specific combinatio...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
Machine learning plays an important role in understanding and predicting the parameters of a microst...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
The accurate prediction of the mechanical properties of foundry alloys is a rather complex task give...
This study explores the use of machine learning (ML) as a data-driven approach to estimate hot ducti...
Mechanical properties of ductile cast iron (DI) depend on its microstructure, which is influenced ...
Cast iron is a very common and useful metal alloy, characterized by its high carbon content (>4%) in...
The study presents a Machine Learning (ML)-based framework designed to forecast the stress-strain re...
The complex metallurgical interrelationships in the production of ductile cast iron can lead to enor...
With the development of the materials genome philosophy and data mining methodologies, machine learn...
The ability of a metal to be subjected to forming processes depends mainly on its plastic behavior a...
Abstract We identify compositionally complex alloys (CCAs) that offer exceptional mechanical propert...
High strength alloys are materials with alloying additions designed to produce a specific combinatio...
Artificial intelligence is widely employed in metallurgy for its ability to solve complex phenomena,...
Machine learning plays an important role in understanding and predicting the parameters of a microst...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...